Converting sign language into text using deep learning methods
2024
0 views
0 downloads
Advisor: Ramazan Tekin
Abstract (EN)
Individuals with hearing and speech impairments experience serious difficulties in communicating with their surroundings. This thesis aims to address this issue with a real-time sign language recognition system. Within the scope of the study, a dataset consisting of 17 frequently encountered words in the literature was specially prepared by 5 subjects. The key points of the words were successfully extracted using the human pose estimation system in the MediaPipe library. These key points were classified using the LSTM architecture of deep learning models, and the obtained results provided 99% accuracy. This proposed system offers an effective solution to improve the daily communication of individuals with hearing and speech impairments.
Author
Dr. Melek Ece Çiftçi
Institution

Batman University
Bilgi Teknolojileri Anabilim Dalı
How to Cite
Melek Ece Çiftçi (Master Thesis). Converting sign language into text using deep learning methods, 2024, Batman University.
License
CC BY 4.0
This work is shared under the specified license terms.